转化式学习
食品安全
监管科学
误传
食物系统
风险管理
工程伦理学
粮食安全
政治学
业务
工程类
心理学
医学
农业
生态学
教育学
财务
病理
法学
生物
作者
Peihua Ma,Shawn Tsai,Yiyang He,Xiaoxue Jia,Dongyang Zhen,Ning Yu,Qin Wang,Jaspreet K.C. Ahuja,Cheng‐I Wei
标识
DOI:10.1016/j.tifs.2024.104488
摘要
Large Language Models (LLMs) are increasingly significant in food science, transforming areas such as recipe development, nutritional analysis, food safety, and supply chain management. These models bring sophisticated decision-making, predictive analytics, and natural language processing capabilities to various aspects of food science. The review focuses on the application of LLMs in enhancing food science, with a strong emphasis on food safety, especially in contaminant detection and risk assessment. It addresses the roles of AI and LLMs in regulatory compliance and food quality control. Challenges like data biases, misinformation risks, and implementation hurdles, including data limitations and ethical concerns, are discussed. The necessity for interdisciplinary collaboration to overcome these challenges is also highlighted. LLMs hold significant potential in automating processes and improving accuracy and efficiency in the global food system. Successful implementation requires continuous updates and ethical considerations. The paper provides insights for academics, industry professionals, and policymakers on the impact of LLMs in food science, emphasizing the importance of interdisciplinary efforts in this domain. Despite potential challenges, the integration of LLMs in food science promises transformative advancements.
科研通智能强力驱动
Strongly Powered by AbleSci AI